SDASMar 11

Fair-Gate: Fairness-Aware Interpretable Risk Gating for Sex-Fair Voice Biometrics

arXiv:2603.11360v15.82 citationsh-index: 2
Predicted impact top 85% in SD · last 90 daysOriginality Incremental advance
AI Analysis

This addresses fairness issues in voice biometrics for users, though it is incremental as it builds on existing methods for bias mitigation.

The paper tackled sex-related performance gaps in voice biometric systems by proposing Fair-Gate, a fairness-aware interpretable risk-gating framework that improves the utility-fairness trade-off, as demonstrated on VoxCeleb1.

Voice biometric systems can exhibit sex-related performance gaps even when overall verification accuracy is strong. We attribute these gaps to two practical mechanisms: (i) demographic shortcut learning, where speaker classification training exploits spurious correlations between sex and speaker identity, and (ii) feature entanglement, where sex-linked acoustic variation overlaps with identity cues and cannot be removed without degrading speaker discrimination. We propose Fair-Gate, a fairness-aware and interpretable risk-gating framework that addresses both mechanisms in a single pipeline. Fair-Gate applies risk extrapolation to reduce variation in speaker-classification risk across proxy sex groups, and introduces a local complementary gate that routes intermediate features into an identity branch and a sex branch. The gate provides interpretability by producing an explicit routing mask that can be inspected to understand which features are allocated to identity versus sex-related pathways. Experiments on VoxCeleb1 show that Fair-Gate improves the utility--fairness trade-off, yielding more sex-fair ASV performance under challenging evaluation conditions.

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